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Raghav Kansal
Raghav Kansal
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Talks and Posters

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All ML Higgs CMS Simulation Anomaly Detection Equivariant / Physics-Informed ML Software Quantum Information Video
BOOST Workshop, Fast jet simulations and how to evaluate them
Aug 1, 2023 Lawrence Berkeley National Lab Talk
Project Slides
BOOST Workshop, Boosted multi-Higgs with jets measurements in CMS
Jul 31, 2023 Lawrence Berkeley National Lab Poster
Project Poster
MODE Workshop on Differentiable Programming for Experiment Design, Machine learning for particle physics simulations
Jul 24, 2023 Princeton Talk
Project Slides
UCI Particle/Astro ML Seminar, Generative transformers and how to evaluate them (+ Lorentz-equivariant networks)
Jun 27, 2023 UC Irvine Invited Talk
Project Project Project Slides
PHYSTAT-2samples Workshop, Applications of two-sample goodness-of-fit tests to deep generative models
Jun 1, 2023 Virtual Talk
Project Slides Video
Deep Dive: Fast and accurate simulation techniques (CMS-only), Evaluation Metrics for FastSim
May 31, 2023 CERN Talk
Project Slides Video
US CMS Annual Collaboration Meeting (CMS-only), Multivariate goodness of fit testing for evaluating HEP generative models
May 31, 2023 Carnegie Mellon Talk
Project Slides
CMS Statistics Committee (CMS-only), Multivariate goodness of fit testing for evaluating HEP generative models
May 22, 2023 CERN Talk
Project Slides
Inter-Experimental ML Group Meeting, Generative transformers and how to evaluate them
Feb 14, 2023 CERN Talk
Project Slides
Computing Upgrades R&D (CMS-only), FastSim on GPUs
Dec 13, 2022 CERN Talk
Project Slides
Foundation models and fast detector simulation, Generative transformers and how to evaluate them
Nov 21, 2022 CERN Invited Talk
Project Slides
ML4Jets, On the Evaluation of Generative Models in HEP
Nov 1, 2022 Rutgers (Virtual) Talk
Project Slides
PyHEP 2022 Workshop, JetNet library for machine learning in high energy physics
Sep 16, 2022 Virtual Talk
Project Video Demo
Machine Learning at GGI, Discussion on Generative Models
Sep 14, 2022 Galileo Galilei Institute, Florence Poster
Project
Machine Learning at GGI, Particle Cloud Generation with Message Passing GANs
Sep 9, 2022 Galileo Galilei Institute, Florence Poster
Project Slides Video
CMS ML Town Hall 2022, Overview and Outlook: Machine Learning for Simulation
Jul 21, 2022 CERN Invited Talk
Project Slides
Snowmass Community Summer Study, Particle Cloud Generation with Message Passing GANs
Jul 17, 2022 UW Seattle Poster
Project
Fermilab LPC Physics Forum, Machine Learning for LHC Simulations
Jul 14, 2022 Fermilab Invited Talk
Project Slides Video
APS April Meeting 2022, Particle Cloud Generation with Message Passing GANs
Apr 10, 2022 New York Poster
Project
APS April Meeting 2022, Search for boosted Higgs boson pair production in the bbVV all-hadronic final state in CMS
Apr 9, 2022 New York Talk
Project Slides
NeurIPS 21 Main Conference, Particle Cloud Generation with Message Passing GANs
Dec 3, 2021 NeurIPS 21 (Virtual) Poster
PDF Project Video
ACAT '21, Particle Cloud Generation with Message Passing GANs
Nov 28, 2021 South Korea (Virtual) Poster
Project Poster
LPCC Fast Detector Simulation Workshop, Validation Techniques for Machine-Learned FastSim
Nov 23, 2021 CERN (Virtual) Invited Talk
Project Slides
HSF New ML Techniques for Simulation Meeting, Particle Cloud Generation with Message Passing GANs
Nov 8, 2021 CERN (Virtual) Talk
Project Slides
University of Washington EPE ML Seminar, Particle Cloud Generation with Message Passing GANs
Oct 11, 2021 University of Washington (Virtual) Invited Talk
Project Slides
ML4Jets, Particle Cloud Generation with Message Passing GANs
Jul 7, 2021 University of Heidelberg (Virtual) Talk
Project Slides Video
MITP Machine Learning for Particle Physics Workshop, Particle Cloud Generation with Message Passing GANs
Jun 23, 2021 Mainz Institute for Theoretical Physics (Virtual) Invited Talk
Project Slides
CMS Machine Learning Forum, Sparse Data Generation
May 5, 2021 CERN (Virtual) Talk
Project Slides
JMU Artificial Intelligence and Machine Learning Seminar, Graph GANs for High Energy Physics Data Generation
Mar 18, 2021 James Madison University (Virtual) Invited Talk
Project Slides
BIDS Deep Generative Models for Fundamental Physics Meeting, Graph GANs for High Energy Physics Data Generation
Mar 17, 2021 Berkeley Institute for Data Science (Virtual) Invited Talk
Project Slides Video
ICL DataLearning Seminar, Graph GANs for High Energy Physics Data Generation
Feb 2, 2021 Imperial College London (Virtual) Invited Talk
Project Slides Video
NeurIPS 2020 Machine Learning and the Physical Sciences Workshop, Graph GANs for Sparse Data Generation in High Energy Physics
Dec 11, 2020 NeurIPS 2020 (Virtual) Poster
Project Poster
Inter-Experimental LHC Machine Learning Working Group Meeting, Sparse Data Generation with Graph GANs
Nov 23, 2020 CERN (Virtual) Talk
Project Slides
IRIS-HEP Review Meeting, Deep Graph Neural Networks for Fast HGCAL Simulation
Feb 27, 2020 Princeton Poster
Project Poster
CMS Machine Learning Forum, Deep Graph Neural Networks for Fast HGCAL Simulation
Aug 28, 2019 CERN Talk
Project Slides
IRIS-HEP Topical Meeting, Deep Graph Neural Networks for Fast HGCAL Simulation
Aug 21, 2019 Virtual Talk
Project Slides
CERN Openlab Lightning Talks, Deep Graph Neural Networks for Fast HGCAL Simulation
Aug 13, 2019 CERN Talk Runner-Up Award
Project Video
UCSD Dean of Physical Sciences' Leadership Council Poster Presentations, Arbitrary Positioning and Manipulation of Ultra-Cold Atoms with Optical Tweezers
Oct 12, 2018 UC San Diego Invited Poster
Project Poster
William A. Lee Undergraduate Research Award Poster Presentations, Arbitrary Positioning and Manipulation of Ultra-Cold Atoms with Optical Tweezers
Aug 30, 2018 UC San Diego Poster
Project Poster
UC San Diego Undergraduate Research Conference, Holographic Optical Tweezers
May 5, 2018 UC San Diego Talk
Project Slides

© 2023 Raghav Kansal

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